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Complexity of ballooned hepatocyte feature recognition: Defining a training atlas for artificial intelligence-based imaging in NAFLD.

Publication ,  Journal Article
Brunt, EM; Clouston, AD; Goodman, Z; Guy, C; Kleiner, DE; Lackner, C; Tiniakos, DG; Wee, A; Yeh, M; Leow, WQ; Chng, E; Ren, Y; Boon Bee, GG ...
Published in: J Hepatol
May 2022

BACKGROUND & AIMS: Histologically assessed hepatocyte ballooning is a key feature discriminating non-alcoholic steatohepatitis (NASH) from steatosis (NAFL). Reliable identification underpins patient inclusion in clinical trials and serves as a key regulatory-approved surrogate endpoint for drug efficacy. High inter/intra-observer variation in ballooning measured using the NASH CRN semi-quantitative score has been reported yet no actionable solutions have been proposed. METHODS: A focused evaluation of hepatocyte ballooning recognition was conducted. Digitized slides were evaluated by 9 internationally recognized expert liver pathologists on 2 separate occasions: each pathologist independently marked every ballooned hepatocyte and later provided an overall non-NASH NAFL/NASH assessment. Interobserver variation was assessed and a 'concordance atlas' of ballooned hepatocytes generated to train second harmonic generation/two-photon excitation fluorescence imaging-based artificial intelligence (AI). RESULTS: The Fleiss kappa statistic for overall interobserver agreement for presence/absence of ballooning was 0.197 (95% CI 0.094-0.300), rising to 0.362 (0.258-0.465) with a ≥5-cell threshold. However, the intraclass correlation coefficient for consistency was higher (0.718 [0.511-0.900]), indicating 'moderate' agreement on ballooning burden. 133 ballooned cells were identified using a ≥5/9 majority to train AI ballooning detection (AI-pathologist pairwise concordance 19-42%, comparable to inter-pathologist pairwise concordance of between 8-75%). AI quantified change in ballooned cell burden in response to therapy in a separate slide set. CONCLUSIONS: The substantial divergence in hepatocyte ballooning identified amongst expert hepatopathologists suggests that ballooning is a spectrum, too subjective for its presence or complete absence to be unequivocally determined as a trial endpoint. A concordance atlas may be used to train AI assistive technologies to reproducibly quantify ballooned hepatocytes that standardize assessment of therapeutic efficacy. This atlas serves as a reference standard for ongoing work to refine how ballooning is classified by both pathologists and AI. LAY SUMMARY: For the first time, we show that, even amongst expert hepatopathologists, there is poor agreement regarding the number of ballooned hepatocytes seen on the same digitized histology images. This has important implications as the presence of ballooning is needed to establish the diagnosis of non-alcoholic steatohepatitis (NASH), and its unequivocal absence is one of the key requirements to show 'NASH resolution' to support drug efficacy in clinical trials. Artificial intelligence-based approaches may provide a more reliable way to assess the range of injury recorded as "hepatocyte ballooning".

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Published In

J Hepatol

DOI

EISSN

1600-0641

Publication Date

May 2022

Volume

76

Issue

5

Start / End Page

1030 / 1041

Location

Netherlands

Related Subject Headings

  • Non-alcoholic Fatty Liver Disease
  • Liver
  • Humans
  • Hepatocytes
  • Gastroenterology & Hepatology
  • Biopsy
  • Artificial Intelligence
  • 3202 Clinical sciences
  • 1117 Public Health and Health Services
  • 1103 Clinical Sciences
 

Citation

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Brunt, E. M., Clouston, A. D., Goodman, Z., Guy, C., Kleiner, D. E., Lackner, C., … Anstee, Q. M. (2022). Complexity of ballooned hepatocyte feature recognition: Defining a training atlas for artificial intelligence-based imaging in NAFLD. J Hepatol, 76(5), 1030–1041. https://doi.org/10.1016/j.jhep.2022.01.011
Brunt, Elizabeth M., Andrew D. Clouston, Zachary Goodman, Cynthia Guy, David E. Kleiner, Carolin Lackner, Dina G. Tiniakos, et al. “Complexity of ballooned hepatocyte feature recognition: Defining a training atlas for artificial intelligence-based imaging in NAFLD.J Hepatol 76, no. 5 (May 2022): 1030–41. https://doi.org/10.1016/j.jhep.2022.01.011.
Brunt EM, Clouston AD, Goodman Z, Guy C, Kleiner DE, Lackner C, et al. Complexity of ballooned hepatocyte feature recognition: Defining a training atlas for artificial intelligence-based imaging in NAFLD. J Hepatol. 2022 May;76(5):1030–41.
Brunt, Elizabeth M., et al. “Complexity of ballooned hepatocyte feature recognition: Defining a training atlas for artificial intelligence-based imaging in NAFLD.J Hepatol, vol. 76, no. 5, May 2022, pp. 1030–41. Pubmed, doi:10.1016/j.jhep.2022.01.011.
Brunt EM, Clouston AD, Goodman Z, Guy C, Kleiner DE, Lackner C, Tiniakos DG, Wee A, Yeh M, Leow WQ, Chng E, Ren Y, Boon Bee GG, Powell EE, Rinella M, Sanyal AJ, Neuschwander-Tetri B, Younossi Z, Charlton M, Ratziu V, Harrison SA, Tai D, Anstee QM. Complexity of ballooned hepatocyte feature recognition: Defining a training atlas for artificial intelligence-based imaging in NAFLD. J Hepatol. 2022 May;76(5):1030–1041.
Journal cover image

Published In

J Hepatol

DOI

EISSN

1600-0641

Publication Date

May 2022

Volume

76

Issue

5

Start / End Page

1030 / 1041

Location

Netherlands

Related Subject Headings

  • Non-alcoholic Fatty Liver Disease
  • Liver
  • Humans
  • Hepatocytes
  • Gastroenterology & Hepatology
  • Biopsy
  • Artificial Intelligence
  • 3202 Clinical sciences
  • 1117 Public Health and Health Services
  • 1103 Clinical Sciences